In the last decade, graphical models have become increasingly popular as
a statistical tool. This book is the first which provides an account of
graphical models for multivariate complex normal distributions.
Beginning with an introduction to the multivariate complex normal
distribution, the authors develop the marginal and conditional
distributions of random vectors and matrices. Then they introduce
complex MANOVA models and parameter estimation and hypothesis testing
for these models. After introducing undirected graphs, they then develop
the theory of complex normal graphical models including the maximum
likelihood estimation of the concentration matrix and hypothesis testing
of conditional independence.